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Tracking Fast and Slow Changes in Synaptic Weights From Simultaneously Observed Pre- and Postsynaptic Spiking

机译:跟踪同时观察到的突触重量和突触后尖刺的快速和缓慢变化

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摘要

Synapses change on multiple timescales, ranging from milliseconds to minutes, due to a combination of both short- and long-term plasticity. Here we develop an extension of the common generalized linear model to infer both short- and long-term changes in the coupling between a pre- and postsynaptic neuron based on observed spiking activity. We model short-term synaptic plasticity using additive effects that depend on the presynaptic spike timing, andwemodel long-term changes in both synaptic weight and baseline firing rate using point process adaptive smoothing. Using simulations, we first show that this model can accurately recover time-varying synaptic weights (1) for both depressing and facilitating synapses, (2) with a variety of long-term changes (including realistic changes, such as due to STDP), (3)with a range of pre and postsynaptic firing rates, and (4) for both excitatory and inhibitory synapses.We then apply our model to two experimentally recorded putative synaptic connections.We find that simultaneously tracking fast changes in synaptic weights, slow changes in synaptic weights, and unexplained variations in baseline firing is essential. Omitting any one of these factors can lead to spurious inferences for the others.Altogether, thismodel provides a flexible framework for tracking short- and long-term variation in spike transmission.
机译:由于短期和长期可塑性的组合,突触在多个时间尺寸的突变变化,从毫秒为几分钟。在这里,我们开发了共同的广义线性模型的扩展,以推断基于观察到的尖刺活动的前后神经元的偶联的短期和长期变化。我们使用附加效果模拟短期突触可塑性,这取决于突触前尖峰定时,并使用点过程自适应平滑的突触重量和基线射击率的长期变化。使用模拟,首先表明该模型可以准确地恢复时变的突触权重(1),以便抑制和促进突触突触,(2)具有各种长期变化(包括由于STDP等现实变化), (3)具有一系列前后发射率,以及(4)对于兴奋性和抑制突触。然后,我们将模型应用于两种实验录制的推定突触连接。我们发现同时跟踪突触权重的快速变化,缓慢变化在突触权重中,基线射击的原因变异是必不可少的。省略这些因素中的任何一个都会导致其他因素。该模型提供了一种用于跟踪尖峰变速器的短期和长期变化的灵活框架。

著录项

  • 来源
    《Neural computation》 |2021年第10期|2682-2709|共28页
  • 作者

    Ganchao Wei; Ian H. Stevenson;

  • 作者单位

    Department of Statistics University of Connecticut Storrs CT 06269 U.S.A.;

    Department of Psychological Sciences and Department of Biomedical Engineering University of Connecticut Storrs CT 06269 U.S.A.;

  • 收录信息 美国《科学引文索引》(SCI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
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